import warnings import torch.nn.functional as F def resize(input, size=None, scale_factor=None, mode='nearest', align_corners=None, warning=True): if warning: if size is not None and align_corners: input_h, input_w = input.shape[2:] output_h, output_w = size if output_h > input_h or output_w > output_h: if ((output_h > 1 and output_w > 1 and input_h > 1 and input_w > 1) and (output_h - 1) % (input_h - 1) and (output_w - 1) % (input_w - 1)): warnings.warn( f'When align_corners={align_corners}, ' 'the output would more aligned if ' f'input size {(input_h, input_w)} is `x+1` and ' f'out size {(output_h, output_w)} is `nx+1`') return F.interpolate(input, size, scale_factor, mode, align_corners)